Trading Volume and Arbitrage Serge Darolles, Gaëlle Le Fol
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Trading volume and Arbitrage Serge Darolles, Gaëlle Le Fol To cite this version: Serge Darolles, Gaëlle Le Fol. Trading volume and Arbitrage. GSTF : Journal on Business Review, 2014, 3 (3). hal-01632841 HAL Id: hal-01632841 https://hal.archives-ouvertes.fr/hal-01632841 Submitted on 15 Nov 2017 HAL is a multi-disciplinary open access L’archive ouverte pluridisciplinaire HAL, est archive for the deposit and dissemination of sci- destinée au dépôt et à la diffusion de documents entific research documents, whether they are pub- scientifiques de niveau recherche, publiés ou non, lished or not. The documents may come from émanant des établissements d’enseignement et de teaching and research institutions in France or recherche français ou étrangers, des laboratoires abroad, or from public or private research centers. publics ou privés. GSTF Journal on Business Review (GBR) Vol.3 No.3, June 2014 Trading volume and Arbitrage Serge Darolles and Gaëlle Le Fol Abstract—Decomposing returns into market and stock (PCA) to both volume and volatility series to focus on the specific components is common practice and forms the basis of volume and volatility factors. Our interest is different as we popular asset pricing models. What about volume? Can volume focus on the idiosyncratic part of the volume. The volume be decomposed in the same way as returns? Lo and Wang time series is time dependent and a factor model is able to (2000) suggest such a decomposition. Our paper contributes to capture the volume time dependency in the first factor. Our this literature in two different ways. First, we provide a model method gives the way to filter the stock specific component to explain why volumes deviate from the benchmark. Our of volume. The stock specific component of volume interpretation is in terms of arbitrage strategies and liquidity. developed here is a signed measure: positive if the stock is Second, we propose a new efficient screening tool that allows overtraded compared to the market and negative if the stock practitioners to extract specific information from volume time is undertraded compared to the market. Hence, it represents series. We provide an empirical illustration of the relevance and the possible uses of our approach on daily data from the FTSE the relative market interest for a stock. index from 2000 to 2002. The contribution of this paper is twofold. First, we propose a volume decomposition, which reflects usual active Keywords— Volume, Market portfolio, Arbitrage, Liquidity. trading strategies on equity markets. We show that this decomposition is an efficient screening tool for practitioners I. INTRODUCTION who try to extracts specific information from volume time If volumes like prices are unquestionably central in all series. Second, we propose a more accurate measure of investment strategies, financial theory traditionally focuses on volume to empirically test volume-return and volume- prices, volatility and price formation analysis and only few volatility relations. papers are incorporating volume in the analysis. The reason for this comes from the difficulty to jointly model prices and Our paper is organized as follow. In Section 2, we first volumes. But of course this difficulty has not prevented discuss the volume measure that we consider, namely the practitioners from using volume series. Volume has become a individual turnover. We then propose a new model that gives measure of market feelings concerning one particular stock, grounds to the decomposition of volume and introduce one sector or one market. For example, a large stock index explicitly the link between traded volumes and investing rise in low or large volumes is not interpreted similarly: a rise strategies. Section 3 presents the statistical approach and an in low volumes is usually considered as fragile or temporary; empirical illustration of the relevance of our approach using on the contrary a rise in large volumes seems strong and daily data for eight stocks from the FTSE index from 2000 to durable. 2002. However, if this use of volume and hence these II. TURNOVER AND MARKET PORTFOLIO interpretations are intuitive in the case of market or sector index, it is not as clear when the analysis concerns individual A. Analysis and measures of volume stocks. To see this, consider an individual stock included in a In active markets – high volume markets, and hence liquid market index. Large traded volumes on this stock can either markets, the information flow is rapidly incorporated into be due to investors’ interest for the market or for that prices through trading and trading volume. Volume has particular stock. In this paper, we propose a decomposition of essentially been considered from this perspective in the the trading volume to discriminate between these two financial literature with three main research directions. In the possibilities. first two approaches, volume conveys information into prices and as such, has been considered through the analysis of The volume decomposition is not new. Technical analysis volume-price relationship (see [11], [13]) or volume-volatility proposes an increasing/decreasing volume decomposition and relationship (see e.g. [35], [21], [14], [1], unpublished [8] and some theoretical papers decompose volume into a normal unpublished [9]). In the latter, volume stands for a measure of component - usually an historical average - and an abnormal liquidity or market quality (see [15], [10], [20] among others). or unexpected component (see e.g. [11], [1]). Decompositions of volume into common and specific components also appear In this large body of literature, the first studies take the to be a growing interest of the literature (see e.g. [17], number of transactions as a proxy for volume, mainly for data unpublished [24], [7], [4], and [26]). In contrast to previous availability reasons ([36], [12], [15], [19]). Since then, approaches, our decomposition directly comes from numerous – aggregated as well as individuals – measures of investment practices and is directly linked to liquidity. volume have been proposed (see [24] for a review of the Despite the similarity of the statistical approaches, the link literature). Turnover, as a measure of volume, was first with investment practices is a real contribution. Moreover, introduced to account for the dependency between the traded [17], as well as [18], conduct a principal component analysis volume and the total number of shares outstanding. As such, the turnover ratio, that is the traded volume corrected by the DOI: 10.5176/2010-4804_3.3.321 30 © 2014 GSTF GSTF Journal on Business Review (GBR) Vol.3 No.3, June 2014 number of shares outstanding, seems to be appropriate when where ∑k PktNk refer to market portfolio capitali- studying the market volume ([32], [23], [6]) or when zation. The volume traded at date t for asset i is then comparing individual asset volumes ([28], [2], [3], [22], [30], proportional to the asset weight in the market [34]). portfolio: Following [24], we retain the turnover ratio for two dit = PitVit = witdmt. (4) reasons. First from a numerical point of view, as said above, turnover ratios, by pulling back assets volumes on a common After some simplifications, we get: scale, allows for comparisons between assets. Second, from a ! financial point of view, under the regular hypotheses required � = !" = � , ∀�, (5) !" ! !" for the CAPM to be valid, turnover measures must all be ! identical (see [24], proposition 1 page 13]. This implication i.e. constant turnover measure across assets. leads to a simple empirical test of the model. Moreover, the intuition of this first result is simple. All the agents hold the At the aggregated level, the overall number of transactions market portfolio and any transaction is linked to a buy or a for a particular asset corresponds to the sum of all individual sell of part of this portfolio; as a consequence, all turnover transactions for this asset. If for any of its individual trades, ratios have to be identical. all agents respect the turnover equality constraint, we get the same result for aggregated trades as for individual stocks. B. Volume and benchmarked volume D. Deviations from the one factor model Let Vit be the number of shares traded for asset i on day t and Nit the total number of shares outstanding for asset i, i = The empirical analysis of turnover ratios of multiple assets 1, ..., N. We assume that the total number of shares traded on a single market leads to the rejection of the above outstanding for each asset is constant over time, i.e. Nit = Ni property. This stylized fact brings Lo and Wang (2000) to re- for all t. The individual stock turnover for asset i on day t is ject the one factor model in favor of a two-factor model sug- given by: gested by a principal component analysis. They show the existing conformity between the risk factors of pricing !!" �!" = (1) !! models and the factorial structure of volume series. Lo and Wang (2001) suppose the existence of only two types of risk: For a given asset, the individual turnover can equivalently a market risk and the risk of modifications in the market be calculated in number of shares or in value, i.e. in euro conditions. As a consequence at equilibrium, investors hold volume. In the latter, one just have to multiply numerator and denominator, in the previous definition, by the stock price. and trade only the market portfolio and a hedging portfolio For a portfolio, however these definitions lead to different providing the interpretation of their two factors linear model. aggregation properties. In the following section, we show that liquidity problems can explain the rejection of the turnovers equality property From the definition of the portfolio average turnover, without implying the failure of one-factor models. During or market index, we introduce the notion of benchmarked illiquid periods arbitrageurs enter the market to provide volume.